A new paper in Nature Computational Science examines potential scenarios for AI-related e-scrap generation, which is driven by its data center needs. | Funtap/Shutterstock[/caption]
As artificial intelligence continues to ramp up, researchers said the computing-heavy tool could lead to skyrocketing volumes of end-of-life electronics and called for equal attention to asset management.
Researchers from the University of China Academy of Sciences in Beijing, Reichman University in Israel and the University of Cambridge in the U.K. on Oct. 28 published "E-waste challenges of generative artificial intelligence," which appeared in the peer-reviewed Nature Computational Science journal.
The research traces the growth in large language models, the type of AI that's used in high-profile tools like ChatGPT. These tools are "trained on vast datasets," the researchers noted, demanding "considerable computational resources for training and inference, which require extensive computing hardware and infrastructure."
In practice, that means more – and much more powerful – data centers. The researchers considered waste generation from 2023 through 2030 under a few different models for how aggressively AI could be rolled out. They looked only at the key hardware involved in AI computing: servers that include graphics processing units, central processing units, storage, memory units, internet communication modules and power systems.
Without any strategic planning, the research found cumulative e-scrap generation of these materials from data centers could total at least 1.2 million metric tons under the most limited rollout and up to 5 million metric tons under the most aggressive.
This e-scrap generation would naturally be concentrated in data center-heavy regions, with 58% in North America, 25% in East Asia and 14% in Europe, the researchers added.
In a statement to E-Scrap News, study author Penn Wang of the Chinese Academy of Sciences said the findings underscore a need for greater transparency from data center operators on how much end-of-life material they are generating, a need to better link data center operators with electronics processors, greater regulation on how end-of-life material from data centers is handled, and global cooperation to handle these projected volumes of material.
[caption id="attachment_17297" align="alignright" width="1200"]
A new paper in Nature Computational Science examines potential scenarios for AI-related e-scrap generation, which is driven by its data center needs. | Funtap/Shutterstock[/caption]
As artificial intelligence continues to ramp up, researchers said the computing-heavy tool could lead to skyrocketing volumes of end-of-life electronics and called for equal attention to asset management.
Researchers from the University of China Academy of Sciences in Beijing, Reichman University in Israel and the University of Cambridge in the U.K. on Oct. 28 published "E-waste challenges of generative artificial intelligence," which appeared in the peer-reviewed Nature Computational Science journal.
The research traces the growth in large language models, the type of AI that's used in high-profile tools like ChatGPT. These tools are "trained on vast datasets," the researchers noted, demanding "considerable computational resources for training and inference, which require extensive computing hardware and infrastructure."
In practice, that means more – and much more powerful – data centers. The researchers considered waste generation from 2023 through 2030 under a few different models for how aggressively AI could be rolled out. They looked only at the key hardware involved in AI computing: servers that include graphics processing units, central processing units, storage, memory units, internet communication modules and power systems.
Without any strategic planning, the research found cumulative e-scrap generation of these materials from data centers could total at least 1.2 million metric tons under the most limited rollout and up to 5 million metric tons under the most aggressive.
This e-scrap generation would naturally be concentrated in data center-heavy regions, with 58% in North America, 25% in East Asia and 14% in Europe, the researchers added.
In a statement to E-Scrap News, study author Penn Wang of the Chinese Academy of Sciences said the findings underscore a need for greater transparency from data center operators on how much end-of-life material they are generating, a need to better link data center operators with electronics processors, greater regulation on how end-of-life material from data centers is handled, and global cooperation to handle these projected volumes of material.
A new paper in Nature Computational Science examines potential scenarios for AI-related e-scrap generation, which is driven by its data center needs. | Funtap/Shutterstock[/caption]
As artificial intelligence continues to ramp up, researchers said the computing-heavy tool could lead to skyrocketing volumes of end-of-life electronics and called for equal attention to asset management.
Researchers from the University of China Academy of Sciences in Beijing, Reichman University in Israel and the University of Cambridge in the U.K. on Oct. 28 published "E-waste challenges of generative artificial intelligence," which appeared in the peer-reviewed Nature Computational Science journal.
The research traces the growth in large language models, the type of AI that's used in high-profile tools like ChatGPT. These tools are "trained on vast datasets," the researchers noted, demanding "considerable computational resources for training and inference, which require extensive computing hardware and infrastructure."
In practice, that means more – and much more powerful – data centers. The researchers considered waste generation from 2023 through 2030 under a few different models for how aggressively AI could be rolled out. They looked only at the key hardware involved in AI computing: servers that include graphics processing units, central processing units, storage, memory units, internet communication modules and power systems.
Without any strategic planning, the research found cumulative e-scrap generation of these materials from data centers could total at least 1.2 million metric tons under the most limited rollout and up to 5 million metric tons under the most aggressive.
This e-scrap generation would naturally be concentrated in data center-heavy regions, with 58% in North America, 25% in East Asia and 14% in Europe, the researchers added.
In a statement to E-Scrap News, study author Penn Wang of the Chinese Academy of Sciences said the findings underscore a need for greater transparency from data center operators on how much end-of-life material they are generating, a need to better link data center operators with electronics processors, greater regulation on how end-of-life material from data centers is handled, and global cooperation to handle these projected volumes of material.
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